{"title":"Support Vector Machine based Stress Detection System to manage COVID-19 pandemic related stress from ECG signal","authors":"Md Fahim Rizwan, Rayed Farhad, Md. Hasan Imam","doi":"10.53799/ajse.v20i1.112","DOIUrl":null,"url":null,"abstract":"This study represents a detailed investigation of induced stress detection in humans using Support Vector Machine algorithms. Proper detection of stress can prevent many psychological and physiological problems like the occurrence of major depression disorder (MDD), stress-induced cardiac rhythm abnormalities, or arrhythmia. Stress induced due to COVID -19 pandemic can make the situation worse for the cardiac patients and cause different abnormalities in the normal people due to lockdown condition. Therefore, an ECG based technique is proposed in this paper where the ECG can be recorded for the available handheld/portable devices which are now common to many countries where people can take ECG by their own in their houses and get preliminary information about their cardiac health. From ECG, we can derive RR interval, QT interval, and EDR (ECG derived Respiration) for developing the model for stress detection also. To validate the proposed model, an open-access database named \"drivedb” available at Physionet (physionet.org) was used as the training dataset. After verifying several SVM models by changing the ECG length, features, and SVM Kernel type, the results showed an acceptable level of accuracy for Fine Gaussian SVM (i.e. 98.3% for 1 min ECG and 93.6 % for 5 min long ECG) with Gaussian Kernel while using all available features (RR, QT, and EDR). This finding emphasizes the importance of including ventricular polarization and respiratory information in stress detection and the possibility of stress detection from short length data (i.e. from 1 min ECG data), which will be very useful to detect stress through portable ECG devices in locked down condition to analyze mental health condition without visiting the specialist doctor at hospital. This technique also alarms the cardiac patients from being stressed too much which might cause severe arrhythmogenesis. © 2021 AIUB Office of Research and Publication. All rights reserved.","PeriodicalId":36368,"journal":{"name":"AIUB Journal of Science and Engineering","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2021-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"AIUB Journal of Science and Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.53799/ajse.v20i1.112","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Mathematics","Score":null,"Total":0}
引用次数: 3
基于支持向量机的心电信号压力检测系统
本研究代表了使用支持向量机算法对人类诱导应力检测的详细调查。正确发现压力可以预防许多心理和生理问题,如重度抑郁症(MDD)、压力引起的心律异常或心律失常的发生。因新冠肺炎疫情引起的压力会使心脏病患者的情况更加恶化,正常人也会因封锁而出现不同的异常。因此,本文提出了一种基于ECG的技术,该技术可以在可用的手持/便携式设备上记录ECG,这些设备现在在许多国家都很常见,人们可以在自己的家中进行ECG,并获得有关其心脏健康的初步信息。从ECG中,我们可以推导出RR间期、QT间期和EDR (ECG衍生呼吸),用于开发应力检测模型。为了验证所提出的模型,在Physionet (physionet.org)上使用了一个名为“drivedb”的开放访问数据库作为训练数据集。通过改变心电长度、特征和支持向量机核类型对几种支持向量机模型进行验证后,结果表明,在使用所有可用特征(RR、QT和EDR)的情况下,高斯核对细高斯支持向量机的准确率达到了可接受的水平(即1分钟ECG为98.3%,5分钟ECG为93.6%)。这一发现强调了在压力检测中包括心室极化和呼吸信息的重要性,以及从短长度数据(即从1分钟ECG数据)中检测压力的可能性,这将非常有助于在锁定状态下通过便携式ECG设备检测压力,从而分析精神健康状况,而无需去医院看专科医生。这项技术还可以提醒心脏病患者不要压力过大,以免导致严重的心律失常。©2021 AIUB研究与出版办公室。版权所有。
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